4 research outputs found

    Prediction of Motor Failure Time Using An Artificial Neural Network

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    Industry is constantly seeking ways to avoid corrective maintenance so as to reduce costs. Performing regular scheduled maintenance can help to mitigate this problem, but not necessarily in the most efficient way. In the context of condition-based maintenance, the main contributions of this work were to propose a methodology to treat and transform the collected data from a vibration system that simulated a motor and to build a dataset to train and test an Artificial Neural Network capable of predicting the future condition of the equipment, pointing out when a failure can happen. To achieve this goal, a device model was built to simulate typical motor vibrations, consisting of a computer cooler fan and several magnets. Measurements were made using an accelerometer, and the data were collected and processed to produce a structured dataset. The neural network training with this dataset converged quickly and stably, while the tests performed, k-fold cross-validation and model generalization, presented excellent performance. The same tests were performed with other machine learning techniques, to demonstrate the effectiveness of neural networks mainly in their generalizability. The results of the work confirm that it is possible to use neural networks to perform predictive tasks in relation to the conditions of industrial equipment. This is an important area of study that helps to support the growth of smart industries

    A Machine Learning Modeling Framework for Predictive Maintenance Based on Equipment Load Cycle: An Application in a Real World Case

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    From a practical point of view, a turbine load cycle (TLC) is defined as the time a turbine in a power plant remains in operation. TLC is used by many electric power plants as a stop indicator for turbine maintenance. In traditional operations, a maximum time for the operation of a turbine is usually estimated and, based on the TLC, the remaining operating time until the equipment is subjected to new maintenance is determined. Today, however, a better process is possible, as there are many turbines with sensors that carry out the telemetry of the operation, and machine learning (ML) models can use this data to support decision making, predicting the optimal time for equipment to stop, from the actual need for maintenance. This is predictive maintenance, and it is widely used in Industry 4.0 contexts. However, knowing which data must be collected by the sensors (the variables), and their impact on the training of an ML algorithm, is a challenge to be explored on a case-by-case basis. In this work, we propose a framework for mapping sensors related to a turbine in a hydroelectric power plant and the selection of variables involved in the load cycle to: (i) investigate whether the data allow identification of the future moment of maintenance, which is done by exploring and comparing four ML algorithms; (ii) discover which are the most important variables (MIV) for each algorithm in predicting the need for maintenance in a given time horizon; (iii) combine the MIV of each algorithm through weighting criteria, identifying the most relevant variables of the studied data set; (iv) develop a methodology to label the data in such a way that the problem of forecasting a future need for maintenance becomes a problem of binary classification (need for maintenance: yes or no) in a time horizon. The resulting framework was applied to a real problem, and the results obtained pointed to rates of maintenance identification with very high accuracies, in the order of 98%

    A Framework for Big Data Analytical Process and Mapping—BAProM: Description of an Application in an Industrial Environment

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    This paper presents an application of a framework for Big Data Analytical Process and Mapping—BAProM—consisting of four modules: Process Mapping, Data Management, Data Analysis, and Predictive Modeling. The framework was conceived as a decision support tool for industrial business, encompassing the whole big data analytical process. The first module incorporates in big data analytical a mapping of processes and variables, which is not common in such processes. This is a proposal that proved to be adequate in the practical application that was developed. Next, an analytical “workbench” was implemented for data management and exploratory analysis (Modules 2 and 3) and, finally, in Module 4, the implementation of artificial intelligence algorithm support predictive processes. The modules are adaptable to different types of industry and problems and can be applied independently. The paper presents a real-world application seeking as final objective the implementation of a predictive maintenance decision support tool in a hydroelectric power plant. The process mapping in the plant identified four subsystems and 100 variables. With the support of the analytical workbench, all variables have been properly analyzed. All underwent a cleaning process and many had to be transformed, before being subjected to exploratory analysis. A predictive model, based on a decision tree (DT), was implemented for predictive maintenance of equipment, identifying critical variables that define the imminence of an equipment failure. This DT model was combined with a time series forecasting model, based on artificial neural networks, to project those critical variables for a future time. The real-world application showed the practical feasibility of the framework, particularly the effectiveness of the analytical workbench, for pre-processing and exploratory analysis, as well as the combined predictive model, proving effectiveness by providing information on future events leading to equipment failures

    Schistosoma mansoni no Maranhão entre 1997 e 2019: uma prospecção tecnológica e científica

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    Schistosomiasis is a parasitic disease, which has man as a definitive and common host in places without basic sanitation. This research aimed to carry out a scientific and technological research on schistosomiasis in the state of Maranhão. The technological prospection was carried out through the search in the bases: EPO, USPTO, INPI and DII, and the search for scientific articles in the databases: Scielo, Bireme, PubMed, Web of Science, Scopus and Science Direct from 1997 to 2019. The results for patents showed that the USPTO base obtained the highest number of publications with 1.879 records. In the results for scientific prospection, it is observed that for the descriptor "Schistosoma mansoni" the Bireme base leads with 8,063 and "Schistosoma mansoni" and "Maranhão" decreases to 21 articles. Thus, it is perceived that more incentive and investments are needed to conduct more research related to schistosomiasis, impact on public health and the few chemotherapy treatments found.A esquistossomose é uma doença parasitária que tem o homem como hospedeiro definitivo e comum em locais sem saneamento básico. Esta pesquisa tem o objetivo de realizar uma prospecção científica e tecnológica sobre a esquistossomose no Estado do Maranhão. A prospecção tecnológica foi realizada por meio da busca nas bases: EPO, USPTO, INPI e DII, e por busca em artigos científicos nas bases: Scielo, Bireme, PubMed, Web of Science, Scopus e Science Direct, de 1997 até 2019. Os resultados para patentes mostraram que a base USPTO obteve o maior número de publicações, com 1.879 registros. Nos resultados para prospecção científica, observa-se que para o descritor “Schistosoma mansoni” a base Bireme lidera com 8.063 e para o "Schistosoma mansoni" and "Maranhão" diminui para 21 artigos.  Dessa forma, percebe-se que é necessário mais incentivo e investimentos para a realização de mais pesquisas relacionadas à esquistossomose, isso devido ao seu impacto na saúde pública e os poucos tratamentos quimioterápicos encontrados
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